As Competências na Formação Continuada Docente, com enfoque nas Culturas Tecnológicas, para o Ensino e Aprendizagem do Educando no Ato da Leitura
Tesis Materias > Educación Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster Cerrado Portugués O estudo sobre as competências na Formação Continuada Docente, com enfoque nas Culturas Tecnológicas, para o Ensino e Aprendizagem do Educando no Ato da Leitura, tem como objetivo geral relatar os estudos e reflexões sobre as competências na formação docente, no que concerne ao uso das ferramentas digitais, nas dificuldades e habilidades do aluno no processo de contextualização no ato da leitura. O estudo baseou-se, entre outros, nos aportes teóricos de Perrenoud, que abordam a construção das competências, o desenvolvimento das competências, a formação continuada para novas competências e as 10 novas competências para ensinar. A pesquisa com revisão bibliográfica, abordagem quantitativa e pesquisa exploratória utilizou-se na coleta de dados o questionário e foi realizada em uma escola de Ensino Médio, com professores e alunos do 1º ano do Ensino Médio. A pesquisa apresentou a tecnologia como ferramenta que aperfeiçoa as competências do docente para o desenvolvimento de atividades direcionadas na contextualização do ato da leitura, pois é imprescindível reconhecer as novas tecnologias. Verificou o desenvolvimento das competências do docente no uso de tecnologias e na busca por qualidade de ensino, foi possível observar na pesquisa as inúmeras, dificuldades que o professor enfrenta, quando procura formação continuada para adquirir essas competências tecnológicas. Analisou o funcionamento das competências na formação docente e que o ensino através da evolução das competências continuadas em dez novas competências apresentadas que podem ser discutidas e aplicadas com base em uma abordagem didática, em seus domínios epistemológicos, psicológicos e praxeológicos, éticos e da gestão escolar. Refletiu sobre competências que geram competências. Dessa forma a pesquisa articulou a importância das competências na formação docente com a inovação do uso das tecnologias na leitura e interpretação para aprender, para ensinar, para ensinar a aprender e para aprender a ensinar. metadata Paula de Barros, Celia Maria mail celiamariapbarros@gmail.com (2022) As Competências na Formação Continuada Docente, com enfoque nas Culturas Tecnológicas, para o Ensino e Aprendizagem do Educando no Ato da Leitura. Masters thesis, SIN ESPECIFICAR.
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O estudo sobre as competências na Formação Continuada Docente, com enfoque nas Culturas Tecnológicas, para o Ensino e Aprendizagem do Educando no Ato da Leitura, tem como objetivo geral relatar os estudos e reflexões sobre as competências na formação docente, no que concerne ao uso das ferramentas digitais, nas dificuldades e habilidades do aluno no processo de contextualização no ato da leitura. O estudo baseou-se, entre outros, nos aportes teóricos de Perrenoud, que abordam a construção das competências, o desenvolvimento das competências, a formação continuada para novas competências e as 10 novas competências para ensinar. A pesquisa com revisão bibliográfica, abordagem quantitativa e pesquisa exploratória utilizou-se na coleta de dados o questionário e foi realizada em uma escola de Ensino Médio, com professores e alunos do 1º ano do Ensino Médio. A pesquisa apresentou a tecnologia como ferramenta que aperfeiçoa as competências do docente para o desenvolvimento de atividades direcionadas na contextualização do ato da leitura, pois é imprescindível reconhecer as novas tecnologias. Verificou o desenvolvimento das competências do docente no uso de tecnologias e na busca por qualidade de ensino, foi possível observar na pesquisa as inúmeras, dificuldades que o professor enfrenta, quando procura formação continuada para adquirir essas competências tecnológicas. Analisou o funcionamento das competências na formação docente e que o ensino através da evolução das competências continuadas em dez novas competências apresentadas que podem ser discutidas e aplicadas com base em uma abordagem didática, em seus domínios epistemológicos, psicológicos e praxeológicos, éticos e da gestão escolar. Refletiu sobre competências que geram competências. Dessa forma a pesquisa articulou a importância das competências na formação docente com a inovação do uso das tecnologias na leitura e interpretação para aprender, para ensinar, para ensinar a aprender e para aprender a ensinar.
Tipo de Documento: | Tesis (Masters) |
---|---|
Palabras Clave: | leitura, competências, docente, formação continuada, tecnologias. |
Clasificación temática: | Materias > Educación |
Divisiones: | Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster |
Depositado: | 17 Nov 2023 23:30 |
Ultima Modificación: | 17 Nov 2023 23:30 |
URI: | https://repositorio.uneatlantico.es/id/eprint/2161 |
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